Title :
Machine Learning Based Session Drop Prediction in LTE Networks and Its SON Aspects
Author :
Daroczy, Balint ; Vaderna, Peter ; Benczur, Andras
Author_Institution :
Inst. for Comput. Sci. & Control, Budapest, Hungary
Abstract :
Abnormal bearer session release (i.e. bearer session drop) in cellular telecommunication networks may seriously impact the quality of experience of mobile users. The latest mobile technologies enable high granularity real-time reporting of all conditions of individual sessions, which gives rise to use data analytics methods to process and monetize this data for network optimization. One such example for analytics is Machine Learning (ML) to predict session drops well before the end of session. In this paper a novel ML method is presented that is able to predict session drops with higher accuracy than using traditional models. The method is applied and tested on live LTE data offline. The high accuracy predictor can be part of a SON function in order to eliminate the session drops or mitigate their effects.
Keywords :
Long Term Evolution; cellular radio; learning (artificial intelligence); quality of experience; telecommunication network management; LTE networks; SON; abnormal bearer session release; bearer session drop; cellular telecommunication networks; data analytics; machine learning based session drop prediction; mobile technologies; mobile users; quality of experience; Accuracy; Interference; Kernel; Signal to noise ratio; Support vector machines; Time series analysis; Uplink;
Conference_Titel :
Vehicular Technology Conference (VTC Spring), 2015 IEEE 81st
Conference_Location :
Glasgow
DOI :
10.1109/VTCSpring.2015.7145925